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I wrote an R function that 'prepares' CSV data (media is the result of a read.table command) by using one column as rownames, then dropping this column and adding a lagged column at the end. Also colnames are set. compare_column is set to 'total'.

prepare <- function(media, lag=1) {
  if(!is.data.frame(media)) stop('Parameter has to be a data frame.')
  row_dates <- media[, 1]
  media <- data.frame(media[, 2], media[, 3], media[, 4], rep(NA, length(media[, 2])))
  rownames(media) <- row_dates
  colnames(media) <- c('total', 'pos', 'neg', 'lag')
  media$lag <- lag(zoo(media[, compare_column]), lag, na.pad=TRUE)
  return(media)
}

Using this returned data frame works perfectly fine for calculating linear models. Anyhow, as soon as I want to fetch the beta coefficient (lm.beta) with a "prepared" data frame involved, I get the following error:

Error in `rownames<-`(x, value) : length of 'dimnames' [1] not equal to array extent 

What I do besides that is nothing. The following already gives me the error.

data1 <- prepare(read.table('1.csv', sep=';'))
lm_pure <- lm(data1[, compare_column] ~ data1$lag)
lm.beta(lm_pure)

Here's the first few rows from data1 (in the last row, lag is NA)

               total pos neg lag
01.01.13 00:00     4   0   0   0
02.01.13 00:00    17   0   0   0
03.01.13 00:00    17   0   0   0
04.01.13 00:00    16   0   0   0
05.01.13 00:00    12   0   0   0
...

What does R want to tell me? Any why?

Thanks, Mario

share|improve this question
    
I"m not familiar with the QuantPsyc package, but did you try coefficients(lm_pure) –  David Arenburg Mar 24 at 12:14
    
That works, thanks. Are those standardized coefs.? –  user2332153 Mar 24 at 12:48
    
No... you'll have to do it yourself this is the code for lm.beta, try to debug with yor model, you probably have to do some minor modifications: lm.beta function (MOD) { b <- summary(MOD)$coef[-1, 1] sx <- sd(MOD$model[-1]) sy <- sd(MOD$model[1]) beta <- b * sx/sy return(beta) } –  David Arenburg Mar 24 at 13:01
    
Alright, thanks a lot. –  user2332153 Mar 24 at 13:22

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